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Comparative analysis of different techniques for spatial interpolation of rainfall data to create a serially complete monthly time series of precipitation for Sicily, Italy

机译:对降雨数据进行空间插值的不同技术的对比分析,以创建意大利西西里岛的一个连续完整的每月降雨时间序列

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The availability of good and reliable rainfall data is fundamental for most hydrological analyses and for the design and management of water resources systems. However, in practice, precipitation records often suffer from missing data values mainly due to malfunctioning of raingauge for specific time periods. This is an important issue in practical hydrology because it affects the continuity of rainfall data and ultimately influences the results of hydrologic studies which use rainfall as input. Many methods to estimate missing rainfall data have been proposed in literature and, among these, most are based on spatial interpolation algorithms. In this paper different spatial interpolation algorithms have been evaluated to produce a reasonably good continuous dataset bridging the gaps in the historical series. The algorithms used are deterministic methods such as inverse distance weighting, simple linear regression, multiple regression, geographically weighted regression and artificial neural networks, and geostatistical models such as ordinary kriging and residual ordinary kriging. In some of these methods, the elevation information, provided by a Digital Elevation Model, has been added to improve estimation of missing data. These algorithms have been applied to the mean annual and monthly rainfall data of Sicily (Italy), measured at 247 raingauges. Optimization of different settings of the various interpolation methods has been carried out using a subset of the available rainfall dataset (modeling set) while the remaining subset (validation set) has been used to compare the results obtained by the different algorithms. Validation results indicate that the univariate methods, neglecting the information of elevation, are characterized by the largest errors, which decrease when the elevation is taken into account. The ordinary kriging of residuals from linear regression between precipitation and elevation, which has provided the best performance at annual and monthly scale, has been used to complete the precipitation monthly time series in Sicily.
机译:良好而可靠的降雨数据的可用性对于大多数水文分析以及水资源系统的设计和管理至关重要。但是,实际上,降水记录通常会缺少数据值,这主要是由于特定时间段雨量计的故障所致。这是实用水文学中的一个重要问题,因为它影响降雨数据的连续性,并最终影响以降雨为输入的水文研究结果。在文献中已经提出了许多估计丢失的降雨数据的方法,其中大多数是基于空间插值算法的。在本文中,已经对不同的空间插值算法进行了评估,以产生一个合理的,连续的数据集,弥合了历史序列中的空白。使用的算法是确定性方法,例如反距离权重,简单线性回归,多元回归,地理加权回归和人工神经网络,以及地统计模型,例如普通克里金法和残差普通克里金法。在这些方法中的某些方法中,已添加了由数字高程模型提供的高程信息,以改善对丢失数据的估计。这些算法已应用于西西里岛(意大利)的年平均降雨量和月降雨量数据,该数据以247个雨量计测量。使用可用降雨数据集(模型集)的子集对各种插值方法的不同设置进行了优化,而其余子集(验证集)已用于比较通过不同算法获得的结果。验证结果表明,忽略高程信息的单变量方法具有最大的误差,当考虑高程时,误差会减小。通过降水和海拔高度之间线性回归的普通残差克里金法,在年度和月度尺度上均表现最佳,已用于完成西西里岛的降水月度时间序列。

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